Shanghai Key Laboratory of New Drug Design, School of Pharmacy, East China University of Science and Technology, 130 Meilong Road, Shanghai 200237, China.
J Chem Inf Model. 2013 Apr 22;53(4):744-52. doi: 10.1021/ci4000079. Epub 2013 Apr 8.
Adverse drug events (ADEs) are the harms associated with uses of given medications at normal dosages, which are crucial for a drug to be approved in clinical use or continue to stay on the market. Many ADEs are not identified in trials until the drug is approved for clinical use, which results in adverse morbidity and mortality. To date, millions of ADEs have been reported around the world. Methods to avoid or reduce ADEs are an important issue for drug discovery and development. Here, we reported a comprehensive database of adverse drug events (namely MetaADEDB), which included more than 520,000 drug-ADE associations among 3059 unique compounds (including 1330 drugs) and 13,200 ADE items by data integration and text mining. All compounds and ADEs were annotated with the most commonly used concepts defined in Medical Subject Headings (MeSH). Meanwhile, a computational method, namely the phenotypic network inference model (PNIM), was developed for prediction of potential ADEs based on the database. The area under the receive operating characteristic curve (AUC) is more than 0.9 by 10-fold cross validation, while the AUC value was 0.912 for an external validation set extracted from the US-FDA Adverse Events Reporting System, which indicated that the prediction capability of the method was reliable. MetaADEDB is accessible free of charge at http://www.lmmd.org/online_services/metaadedb/. The database and the method provide us a useful tool to search for known side effects or predict potential side effects for a given drug or compound.
药物不良反应(ADE)是指在正常剂量下使用特定药物所产生的危害,这对于药物在临床使用中的批准或继续上市至关重要。许多 ADE 在药物获得临床批准之前在试验中并未被发现,这导致了不良的发病率和死亡率。迄今为止,全世界已经报告了数百万例 ADE。避免或减少 ADE 的方法是药物发现和开发的一个重要问题。在这里,我们报告了一个全面的药物不良反应数据库(即 MetaADEDB),该数据库通过数据集成和文本挖掘,包含了 3059 种独特化合物(包括 1330 种药物)和 13200 种 ADE 项目之间超过 520,000 种药物-ADE 关联。所有的化合物和 ADE 都用 Medical Subject Headings(MeSH)中最常用的概念进行了注释。同时,我们开发了一种计算方法,即表型网络推断模型(PNIM),用于根据数据库预测潜在的 ADE。10 折交叉验证的接收者操作特征曲线(AUC)下面积大于 0.9,而从美国 FDA 不良事件报告系统中提取的外部验证集的 AUC 值为 0.912,这表明该方法的预测能力可靠。MetaADEDB 可在 http://www.lmmd.org/online_services/metaadedb/ 免费获取。该数据库和方法为我们提供了一个有用的工具,用于搜索已知的副作用或预测给定药物或化合物的潜在副作用。